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Article

The Role of Age-Friendly Environments on Quality of Life among Thai Older Adults

by
Sariyamon Tiraphat
1,
Karl Peltzer
1,2,3,*,
Kriengsak Thamma-Aphiphol
1 and
Kawinarat Suthisukon
1
1
ASEAN Institute for Health Development, Mahidol University, Salaya, Phutthamonthon, Nakhon Pathom 73170, Thailand
2
Department of Psychology, University of the Free State, Bloemfontein 9300, South Africa
3
HIV/AIDS/STIs and TB (HAST), Human Sciences Research Council, Pretoria 0001, South Africa
*
Author to whom correspondence should be addressed.
Int. J. Environ. Res. Public Health 2017, 14(3), 282; https://doi.org/10.3390/ijerph14030282
Submission received: 27 January 2017 / Revised: 4 March 2017 / Accepted: 5 March 2017 / Published: 9 March 2017
(This article belongs to the Special Issue Ageing Well: The Role of Age-Friendly Environments)

Abstract

:
Studies on the significance of age-friendly environments towards quality of life among older adults have been limited. This study aimed to examine the association between age-friendly environments and quality of life among Thai older adults. Cross-sectional interview survey data were collected from 4183 older adults (≥60 years) using multistage stratified systematic sampling from all four regions in Thailand. The outcome variable was the World Health Organization Quality of Life (WHOQOL-BREF) scale, while independent variables included sociodemographic factors, having a health problem, and neighbourhood age-friendly environment variables. In multivariable logistic regression, significant age-friendly environments predictors of quality of life included walkable neighbourhood, neighbourhood aesthetics, neighbourhood service accessibility, neighbourhood criminal safety, neighbourhood social trust, neighbourhood social support, and neighbourhood social cohesion. The present study confirms the important role of age-friendly neighbourhoods in terms of physical and social environments towards the quality of life of older adults.

1. Introduction

Global life expectancy is increasing each year. The World Health Organization (WHO) reported that “average life expectancy at birth in 1955 was just 48 years; in 1995 it was 65 years; in 2025 it will reach 73 years” [1]. The longer life expectancy causes a rapid increase in the number of older adults (60 years and older), doubling from 600 million in 2017 to 1.2 billion in 2025 [2]. Due to a longer life expectancy, maintaining a better quality of life is challenging.
The WHO indicated that not only genes and personal characteristics, but also physical and social environments can play an important role in determining people’s health and well-being throughout people’s life course [3]. In order to prepare for demographic ageing, the WHO developed guidelines on age-friendly environments, including eight domains: “Areas of urban living: outdoor spaces and buildings; transportation; housing; social participation; respect and social inclusion; civic participation and employment; communication and information; and community support and health services.” [4]. Age-friendly physical and social environments are designed to encourage and support active ageing by enhancing opportunities for health, participation and security so as to improve the quality of life of the ageing population [2,4].
Previous studies found that the following age-friendly environment factors may be associated with better quality of life, well-being, life satisfaction, or self-rated health among older adults: social environment such as social support from family, friends and neighbours [5,6,7,8], neighbourhood social cohesion [8,9,10,11,12,13], social trust [14,15], an aesthetic neighbourhood or pleasant physical environment [11,16,17,18], a walkable neighbourhood [19,20], neighbourhood service accessibility [5,21,22], perceived neighbourhood security and safety [23,24,25], and neighbourhood crime safety [26,27]. There is a lack of studies in Southeast Asia, including Thailand, investigating age-friendly environments and how these impact quality of life among older adults.
Therefore, this study aimed to examine the association between age-friendly environments and quality of life among older adults in Thailand. Evidence of a significant relationship between age-friendly environments and quality of life among older adults will support health and social authorities to increase efforts in building age-friendly environments.

2. Methodology

2.1. Description of Survey and Study Population

This research design was a cross-sectional interview household survey using a multistage, stratified sampling procedure collecting data in all four regions of Thailand and the Bangkok Metropolitan Administration (BMA). We calculated the sample size using the total number of the Thai older population aged 60 years and older as 10,014,705 obtained from the National Statistical Office (NSO) of Thailand [28]. The sample size for this study was calculated by using Krejcie and Morgan formula, with the standard population proportion of 50%, and degree of accuracy at 0.015. After adding about 10% of the sample size to information loss due to incomplete data or withdrawal of participants, the final sample size was 4316 cases of the older population. According to the NSO, among the whole population aged 60 years and older, 9% of older adults live in the BMA, 26% in the central, 21% in the northern, 32% in the northeastern, and 12% live in the southern region. Therefore, a representative sample of the older adult population in Thailand included the following proportions for each region: 404 from the BMA, 1101 from the central, 914 from the northern, 1379 from the northeastern, and 518 from the southern region. At the first sampling stage, two provinces were randomly selected from all 25 provinces in the central region, two from nine provinces in the northern region, three from 20 provinces in the northeastern region, and four from 14 provinces in the southern region. At the second stage, two districts were randomly selected from 7 to 15 districts in each province, including the BMA. At the third step, in each district, villages were selected based on urban and rural areas. At the final step, every person 60 years of age and older living in the randomly selected households in the study area was eligible for the study. Finally, from all the eligible respondents in a household, one was randomly selected for the interview.
After excluding the observations with missing data, 4183 observations remained in the sample. This research project received ethical approval from the Research Ethics Committee of the Faculty of Social Sciences and Humanities, Mahidol University (Certificate of Approval No. 2015/151.2204). Informed consent was obtained from all study participants.

2.2. Measures

Quality of life was assessed with the World Health Organization Quality of Life (WHOQOL-BREF) questionnaire-Thai version [29], which has been validated with an older adult population in Thailand showing a good validity of 0.65 [28]. The WHOQOL-BREF-THAI is composed of 26 items for evaluating four main dimensions of quality of life including physical, psychological, social relationships and environment domains. Each individual item of the WHOQOL-BREF is scored from 1 to 5 on a response ordinal scale, with higher scores indicating a higher quality of life. Three items of the questionnaire must be reversed before scoring. In this study, the sum score ranged from 30 to 130. Finally, we dichotomized the quality of life as poor/normal and good quality of life, using a standard cutting point criteria as below 96 for poor/normal quality of life and 96 or above for good quality of life [29]. Internal consistency for the WHOQOL-BREF in this study sample was α = 0.93.
Age-friendly environments were assessed with two scales: (1) the 23-item “Neighbourhood Environment Walkability Scale-Abbreviated” (NEWS-A) [30], adapted Thai version [31]; and (2) a nine-item neighbourhood social environment index [19].
(1)
The NEWS-A included in this study consisted of six sub-scales, including: (A) service accessibility (four items, e.g., “It is not too far for you to walk from your home to stores such as grocery, drug store, fresh fruit and vegetable market, or supermarket.”) (Cronbach α = 0.83); (B) street connectivity (three items, e.g., “In your neighbourhood, there are many ways to choose to go from one place to another.”) (Cronbach α = 0.73); (C) infrastructure and safety for walking and cycling (six items, e.g., “The sidewalk in your neighbourhood is mostly along the road.”) (Cronbach α = 0.79); (D) aesthetics (four items, e.g., “In your neighbourhood, it is generally free from litter, swamp, and other debris.”) (Cronbach α = 0.76); (E) traffic hazards (three items, e.g., “In your neighbourhood there is crowded traffic nearby, making it difficult and unsatisfying to walk.”) (Cronbach α = 0.86); and (F) crime (three items, e.g., “There is a high crime rate in your neighbourhood.”) (Cronbach α = 0.87). The response options ranged from 1 (strongly disagree) to 4 (strongly agree). The subscales for traffic hazards and crime were reversed scored. Summing the mean score from each subscale, the possible scores ranged 6–24. A higher score referred to a more favorable value of the environmental characteristics or higher physical activity performance and a lower score referred to less favorable value of the environmental characteristics or lower physical activity performance. Finally, the scores of each subscale were dichotomized as low and high, using the median as the cut point.
(2)
The neighbourhood social environment index consisted of three sections: (A) social trust (three items, e.g., “You generally trust your neighbour; for example, when you are not at home, you ask your neighbour to look after your property.”) (Cronbach α = 0.83); (B) social cohesion (three items, e.g., “You and your neighbours get together for activities such as community problem solving.”) (Cronbach α = 0.85); and (C) social support (three items, e.g., “Your neighbours are very pleased to help each other.”) (Cronbach α = 0.91). The instruction required participants to respond to the question “What do you think best applies to you and your neighbourhood?” The response options ranged from 1 (strongly disagree) to 5 (strongly agree). The possible scores ranged 9–45. Higher scores reflected greater satisfaction. Finally, the scores of each subscale were dichotomized as low and high, using the median as the cut point.
Sociodemographic and health variables included: age, gender, educational level, marital status, income level (1: less than 5000 Baht/month; 2: 5001–10,000 Baht/month; 3: 10,001–20,000 Baht/month; and 4: 20,001 Baht or higher per month), geolocation (1: rural area; 2: urban area; and 3: Bangkok Metropolitan Area), living arrangement (1: living alone; 2: living with others), number of years residing in current community (1: ≤10 years, 2: >10 years), and currently having a health problem such as a chronic disease, physical health problem, mental health problem and other health problem that had been diagnosed by a physician (1: no; 2: yes).

2.3. Data Analysis

Data were analysed using IBM Corp. IBM SPSS Statistics version 21.0 (IBM Corp, Armonk, NY, USA). Descriptive statistics was used to describe the sample. In order to examine differences in the proportion of quality of life, Pearson χ2 tests were applied. Multivariable logistic regression analysis was applied to investigate the predictors (socio-demographic factors, health problems, and total age-friendly environment) of good quality of life. Finally, age-friendly environmental predictors in each subscale were examined by multivariable logistic regression using the “enter method.” All predictors were checked for co-linearity, which was not of concern (Variance Inflation Factor = VIF ranging 1.2–2.4). The level of significance for all analyses was set at p < 0.05.

3. Results

3.1. Sample Characteristics

The total study sample included 4183 Thai older adults (60 years or more); the response rate was 95%. Almost two-thirds (64.6%) of the sample were women, more than half (54.3%) were 60 to 69 years old and were married (58.5%). Most had completed elementary school (73.9%), had an income of less than 5000 Baht per month (74.6%), and 54.4% lived in urban areas including Bangkok. Most older adults (>90%) had been living in their community for more than ten years and were living with others. The majority (76%) indicated that they had a health problem (see Table 1).

3.2. Descriptive Results

Approximately 50% of the participants perceived their neighbourhood as having high street connectivity, places for walking, criminal safety, and traffic safety. About 60% of the respondents perceived their neighbourhood as having high service accessibility and high aesthetics. More than 75% of the older adults agreed that their neighbourhood had high social cohesion and high social support, but only 55.6% reported high social trust in their neighbourhood. More than one-third (35.8%) of the older adults scored on the WHOQOL-BREF as having a good quality of life (see Table 2).

3.3. Levels of Quality of Life

The results of χ2 tests showed that significant socio-demographic and health factors were associated with quality of life among Thai older adults, namely higher education, higher income, younger age, being married, not having a health problem and having resided in their community longer than ten years. Gender and living arrangement were not significant factors associated with quality of life. Further, age-friendly environments were found to be significantly associated with quality of life among Thai older adults. In particular, street connectivity, places for walking, criminal safety, traffic safety, service accessibility, aesthetics, social trust, social cohesion and social support were associated with good quality of life (see Table 3).

3.4. Age-Friendly Environments, Socio-Demographic Factors and Health Conditions as Predictors of Quality of Life

Table 4 indicates the predictors of quality of life among the Thai older population. The results of multivariable logistic regression indicate that older adults who perceived a higher level of neighbourhood age-friendly environment were 3.79 times more likely to have a good quality of life compared to those perceiving a lower level of neighbourhood age-friendly environment. Other significant predictors of quality of life among the Thai older population include educational level, marital status, income level, age level, health problem, and number of years living in the community.
Table 5 indicates significant age-friendly environment predictors of quality of life among older adults by each age-friendly environment sub-scale. After adjusting for sociodemographic and health variables, the results of multivariable logistic regression indicate that significant age-friendly predictors of quality of life are places for walking, criminal safety, service accessibility, aesthetics, social trust, social cohesion and social support. However, the results showed that neighbourhood street connectivity and neighbourhood traffic hazards are not significant predictors of quality of life.
Older adults who perceived their neighbourhoods as having high levels of places for walking, aesthetics, service accessibility, and criminal safety were more likely to have better quality of life than those who perceived their neighbourhoods as having lower rates in physical environments, 1.34, 1.40, 1.75, and 1.80 times, respectively. Further, older adults who perceived their neighbourhoods as having higher in social cohesion, social support and social trust were more likely to report better quality of life than those who perceived their neighbourhoods as having lower rates in social environments, 1.47, 1.52, and 2.46 times, respectively.

4. Discussion

The study found among a large sample of older adults in Thailand significant associations between perceived age-friendly environments, in particular physical, security and social environments, and quality of life. Overall, older adults who perceived a high level of age-friendliness in their neighbourhoods were 3.79 times more likely to have better quality of life than older adults who perceived low levels of age-friendliness in their neighbourhood. Among age-friendly environment predictors, neighbourhood social trust appeared to have the greatest positive impact on quality of life among this Thai older adult population. The strongest predictor of quality of life was neighbourhood social trust, followed by neighbourhood criminal safety, neighbourhood service accessibility, neighbourhood social support, neighbourhood social cohesion, neighbourhood aesthetics, and walkable neighbourhood.
In agreement with previous studies [9,10,11], this study found a significant positive relationship between neighbourhood social trust, social support and social cohesion and quality of life among the older population. Another study from the Netherlands described that social cohesion and social support among neighbours may increase levels of well-being in older adults by way of providing affective support, increasing self-esteem and enhancing mutual respect [8]. In a study from Canada it was found that only a sense of trust in people within one’s family was found to be associated with people’s well-being, whereas a sense of trust in neighbours was not [14]. However, the participants in that study were 15 years of age and older, and the study was not adjusted by the number of years participants had been living in their community. In agreement with our study findings was a study in a developing country, Colombia, that found that older adults with the highest perception of trust in their neighbourhood had better mental health-related quality of life (HRQOL) compared to their counterparts with the lowest perception of trust [14]. The researchers of that study [14] believed that higher levels of “trust in others” enabled them to reduce negative emotions, stress levels, and anxiety, and they were more likely to increase feelings of security and self-esteem, leading to better mental health as well as initiating collective and coordinated actions that might directly promote health by limiting or delaying the onset of disease and functional disability [15].
Regarding physical or built environments, the significant relationship of neighbourhood accessibility, neighbourhood aesthetics and places for walking in neighbourhood and quality of life in this study was also found in several previous studies [5,15,16,17,18,19,20,21,22,29,31]. For example, in a study on neighbourhood aesthetics, previous research from Berlin addressed that residents living in a more aesthetic neighbourhood, such as a neighbourhood with more vegetation view, have significantly better conditions of mental health such as lower stress and higher life satisfaction [16]. In agreement with the Berlin research, previous research from the United States also documented the important role of natural environments, such as air, water, open space, and cleanliness around neighbourhoods on quality of life among Vermont residents [17]. Moreover, a study in the Netherlands also indicated that quality and quantity of greenspace were positively related with self-rated health among Dutch residents in an urban neighbourhood [32]. It is reasonable to consider that residents living near greenspace or natural environment filled with recreational resources would spend more time on physical activity, and can, thus, improve functional status and well-being [33]. Another study from the United States pointed out that pleasantness surrounding people’s homes provided the older people with easy and attractive routes with which to remain active and enjoy a good quality of life [18]. Recent research from China and Brazil also support that aesthetic neighbourhoods are associated with improved physical health-related quality of life among Chinese adults aged 30–55 years [11], and are associated with better mental health-related quality of life among the Brazilian population [12]. Additionally, findings from a mixed method study indicate that a pleasant physical environment surrounding a social care institution plays a significant role in enhancing quality of life amongst older people in Malaysia [13]. In respect to walkable neighbourhoods, a review from the United States [19] documented that green environment in respect to walkability was strongly related to the health and well-being of older adults. In a study from Indonesia, a significant relationship between public, open space-related walking and the physical quality of life among residents in a low-income community was found [20]. However, some studies from the United States found no association between neighbourhood walkability and health-related quality of life among adults in higher income neighbourhoods [34]. In case of neighbourhood service accessibility, a study from the United States found a significant relationship between well-being and neighbourhood accessibility among US elderly in ten major cities [21]. Yet another study from the UK [22] indicated that accessibility was a main predictor of quality of life among British elderly aged 65 years and older, due to the easy access to local facilities and transport bringing about independence of the elderly. Overall, these findings seem to support the importance of mobility and accessibility with regard to quality of life in older adults. We did not find an association between neighbourhood street connectivity and quality of life among Thai older persons. This may be because the Thai older population is not accustomed to engaging in physical activity such as walking in the streets or through a block network. Instead, they may have physical activity such as walking or jogging in a public park or recreational area.
Concerning neighbourhood crime, in agreement with our results, a prior study from Brazil found a significant association between neighbourhood criminal safety and physical as well as mental health-related quality of life [12]. It is possible that the fear of crime may negatively impact mental health, such as incite depression [35]. In addition, fear of crime may have an impact on social well-being. For example, crime reduced trust and cohesion within communities and caused individual withdrawal, which then impacted negatively on well-being or quality of life [23]. Unlike previous studies [23,24,25,26], this study did not find an association between traffic safety and the quality of life among Thai older adults. It is possible that the NEWS-A sub-scale measuring traffic hazards did not fully capture the Thai context of traffic safety. More research, particularly on the dimension of age-friendly traffic safety is required.
The results of this study can assist planners in the design of an age-friendly city and the management of age-friendly environments so as to promote high quality of life among the older population. A combination of social and physical or built environments in a neighbourhood, such as social trust, social cohesion, social support, accessibility, aesthetics, walking trails, and safe environments will contribute to healthier and more livable aging communities. Other age-friendly environments, such as quality and quantity of health care service, and economic development are also essential the effort to build healthier and more livable aging communities.
There are some limitations to this study. First, the nature of the cross-sectional design of the study cannot confirm the causal relationships between quality of life and the predictors. Second, age-friendly environments are comprised of many dimensions, such as housing, transportation, civic participation and employment, respect and social inclusion, and communication and information, some of which the present study did not include, and should be included in future studies. Third, the measurement of age-friendly environments in this study relied on perceived rather than objective measures of the environments. However, the strength of the present study lies in the large representative sample of older adults in Thailand utilized, linking age-friendly environments to quality of life in preparation for an aging society.

5. Conclusions

Moving toward an age-friendly environment is one of the most important challenges in responding to demographic transition. The present study significantly supported the important roles of age-friendly environments in impacting quality of life among the older population in Thailand. In order to build an age-friendly community, the improvement of physical or built environments, social environments, and security within that community is a challenging issue that must be considered.

Acknowledgments

This research project is supported by Mahidol University and Hospice and Elderly Care: Research and Learning Center. All participants in this project including staff, fieldworkers, respondents and local authorities are thanked for their kind sharing and efforts.

Author Contributions

Sariyamon Tiraphat participated in the conception, design, analyzing data and writing the manuscript; Karl Peltzer participated in reanalysing the data and rewriting the manuscript; Kriengsak Thamma-Aphiphol and Kawinarat Suthisukon managed the data collection process. All authors approved the final version of the manuscript.

Conflicts of Interest

The authors declare no conflict of interest.

References

  1. World Health Organization. 50 Facts: Global Health Situation and Trends 1955–2025. Available online: http://www.Who.Int/whr/1998/media_centre/50facts/en/ (accessed on 20 January 2017).
  2. World Health Organization. Global Age-Friendly Cities Project. Available online: http://www.Who.Int/ageing/projects/age_friendly_cities/en/ (accessed on 20 January 2017).
  3. World Health Organization. Age Friendly Environment. 2016. Available online: Http://www.Who.Int/ageing/projects/age-friendly-environments/en/ (accessed on 20 January 2017).
  4. World Health Organization. Global Age-Friendly Cities: A Guide. 2007. Available online: http://www.Who.Int/ageing/publications/global_age_friendly_cities_guide_english.Pdf?Ua=1 (accessed on 20 January 2017).
  5. Lehning, A.J.; Smith, R.J.; Dunkle, R.E. Age-friendly environments and self-rated health: An exploration of Detroit elders. Res. Aging 2014, 36, 72–94. [Google Scholar] [CrossRef] [PubMed]
  6. Park, S.; Lee, S. Age-friendly environments and life satisfaction among South Korean elders: Person-environment fit perspective. Aging Ment. Health 2016, 1–10. [Google Scholar] [CrossRef] [PubMed]
  7. Bowling, A.; Gabriel, Z.; Dykes, J.; Dowding, L.M.; Evans, O.; Fleissig, A.; Banister, D.; Sutton, S. Let’s ask them: A national survey of definitions of quality of life and its enhancement among people aged 65 and over. Int. J. Aging Hum. Dev. 2003, 56, 269–306. [Google Scholar] [CrossRef] [PubMed]
  8. Cramm, J.M.; Van Dijk, H.M.; Nieboer, A.P. The importance of neighborhood social cohesion and social capital for the well being of older adults in the community. Gerontologist 2013, 53, 142–152. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  9. Van Dyck, D.; Teychenne, M.; McNaughton, S.A.; De Bourdeaudhuij, I.; Salmon, J. Relationship of the perceived social and physical environment with mental health-related quality of life in middle-aged and older adults: Mediating effects of physical activity. PLoS ONE 2015, 10, e0120475. [Google Scholar] [CrossRef] [PubMed] [Green Version]
  10. Engel, L.; Chudyk, A.; Ashe, M.; McKay, H.; Whitehurst, D.; Bryan, S. Older adults’ quality of life—Exploring the role of the built environment and social cohesion in community-dwelling seniors on low income. Soc. Sci. Med. 2016, 164, 1–11. [Google Scholar] [CrossRef] [PubMed]
  11. Gao, M.; Ahern, J.; Koshland, C.P. Perceived built environment and health-related quality of life in four types of neighborhoods in Xi’an, China. Health Place 2016, 39, 110–115. [Google Scholar] [CrossRef] [PubMed]
  12. Soares, J.; Simões, E.J.; Ramos, L.R.; Pratt, M.; Brownson, R.C. Cross-sectional associations of health-related quality of life measures with selected factors: A population-based sample in Recife, Brazil. J. Phys. Act. Health 2010, 7, S229–S241. [Google Scholar] [CrossRef] [PubMed]
  13. Dahlan, A.; Ibrahim, S.A.S.; Masuri, M.G. Role of the physical environment and quality of life amongst older people in institutions: A mixed methodology approach. Procedia Soc. Behav. Sci. 2016, 234, 106–113. [Google Scholar] [CrossRef]
  14. Leung, A.; Kier, C.; Fung, T.; Fung, L.; Sproule, R. Searching for happiness: The importance of social capital. In The Exploration of Happiness; Springer: Dordrecht, The Netherlands, 2013; pp. 247–267. [Google Scholar]
  15. Lucumí, D.I.; Gomez, L.F.; Brownson, R.C.; Parra, D.C. Social capital, socioeconomic status, and health-related quality of life among older adults in Bogota (Colombia). J. Aging Health 2015, 27, 730–750. [Google Scholar] [CrossRef] [PubMed]
  16. Honold, J.; Lakes, T.; Beyer, R.; van der Meer, E. Restoration in urban spaces nature views from home, greenways, and public parks. Environ. Behav. 2016, 48, 796–825. [Google Scholar] [CrossRef]
  17. Mulder, K.; Costanza, R.; Erickson, J. The contribution of built, human, social and natural capital to quality of life in intentional and unintentional communities. Ecol. Econ. 2006, 59, 13–23. [Google Scholar] [CrossRef]
  18. Ward Thompson, C.; Aspinall, P.A. Natural environments and their impact on activity, health, and quality of life. Appl. Psychol. Health Well-Being 2011, 3, 230–260. [Google Scholar] [CrossRef]
  19. Young, A.F.; Russell, A.; Powers, J.R. The sense of belonging to a neighborhood: Can it be measured and is it related to health and well being in older women? Soc. Sci. Med. 2004, 59, 2627–2637. [Google Scholar] [CrossRef] [PubMed]
  20. Nasution, A.D.; Zahrah, W. Community perception on public open space and quality of life in Medan, Indonesia. Procedia Soc. Behav. Sci. 2014, 153, 585–594. [Google Scholar] [CrossRef]
  21. Leyden, K.M.; Goldberg, A.; Michelbach, P. Understanding the pursuit of happiness in ten major cities. Urban Aff. Rev. 2011, 47, 861–888. [Google Scholar] [CrossRef]
  22. Bowling, A.; Banister, D.; Sutton, S.; Evans, O.; Windsor, J. A multidimensional model of the quality of life in older age. Aging Ment. Health 2002, 6, 355–371. [Google Scholar] [CrossRef] [PubMed]
  23. Lorenc, T.; Clayton, S.; Neary, D.; Whitehead, M.; Petticrew, M.; Thomson, H.; Cummins, S.; Sowden, A.; Renton, A. Crime, fear of crime, environment, and mental health and wellbeing: Mapping review of theories and causal pathways. Health Place 2012, 18, 757–765. [Google Scholar] [CrossRef] [PubMed]
  24. Parra, D.C.; Gomez, L.F.; Sarmiento, O.L.; Buchner, D.; Brownson, R.; Schimd, T.; Gomez, V.; Lobelo, F. Perceived and objective neighborhood environment attributes and health related quality of life among the elderly in Bogota, Colombia. Soc. Sci. Med. 2010, 70, 1070–1076. [Google Scholar] [CrossRef] [PubMed]
  25. Rantakokko, M.; Iwarsson, S.; Kauppinen, M.; Leinonen, R.; Heikkinen, E.; Rantanen, T. Quality of life and barriers in the urban outdoor environment in old age. J. Am. Geriatr. Soc. 2010, 58, 2154–2159. [Google Scholar] [CrossRef] [PubMed]
  26. Węziak-Białowolska, D. Quality of life in cities—Empirical evidence in comparative European perspective. Cities 2016, 58, 87–96. [Google Scholar] [CrossRef]
  27. Kuroki, M. Crime victimization and subjective well-being: Evidence from happiness data. J. Happiness Stud. 2013, 14, 783–794. [Google Scholar] [CrossRef]
  28. National Statistical Office (NSO) of Thailand. Table 1 Number of the Elderly by Sex, Province, Area and Region. Available online: http://service.nso.go.th/nso/nsopublish/themes/files/elderlyworkPdf57-1.pdf (accessed on 20 January 2017).
  29. Taboonpong, S.; Suttharangsee, W.; Chailangka, P. Evaluating psychometric properties of who quality of life questionnaire in Thai elderly. J. Gerontol. Geriatr. Med. 2001, 2, 6–12. [Google Scholar]
  30. Cerin, E.; Saelens, B.E.; Sallis, J.F.; Frank, L.D. Neighborhood environment walkability scale: Validity and development of a short form. Med. Sci. Sports Exerc. 2006, 38, 1682. [Google Scholar] [CrossRef] [PubMed]
  31. Kraithaworn, P.; Sirapo-ngam, Y.; Piaseu, N.; Nityasuddhi, D.; Gretebeck, K.A. Factors predicting physical activity among older Thais living in low socioeconomic urban communities. Pac. Rim Int. J. Nurs. Res. 2011, 15, 39–56. [Google Scholar]
  32. Van Dillen, S.M.; de Vries, S.; Groenewegen, P.P.; Spreeuwenberg, P. Greenspace in urban neighbourhoods and residents’ health: Adding quality to quantity. J. Epidemiol. Community Health 2012, 66, e8. [Google Scholar] [CrossRef] [PubMed]
  33. Björk, J.; Albin, M.; Grahn, P.; Jacobsson, H.; Ardö, J.; Wadbro, J.; Östergren, P.-O.; Skärbäck, E. Recreational values of the natural environment in relation to neighbourhood satisfaction, physical activity, obesity and wellbeing. J. Epidemiol. Community Health 2008, 62, e2. [Google Scholar] [CrossRef] [PubMed]
  34. Sallis, J.F.; Saelens, B.E.; Frank, L.D.; Conway, T.L.; Slymen, D.J.; Cain, K.L.; Chapman, J.E.; Kerr, J. Neighborhood built environment and income: Examining multiple health outcomes. Soc. Sci. Med. 2009, 68, 1285–1293. [Google Scholar] [CrossRef] [PubMed]
  35. Ivey, S.L.; Kealey, M.; Kurtovich, E.; Hunter, R.H.; Prohaska, T.R.; Bayles, C.M.; Satariano, W.A. Neighborhood characteristics and depressive symptoms in an older population. Aging Ment. Health 2015, 19, 713–722. [Google Scholar] [CrossRef] [PubMed]
Table 1. Sample characteristics (n = 4183).
Table 1. Sample characteristics (n = 4183).
VariablenPercent
Age in years
 60–69227254.3
 70–79137832.9
 80 or more53312.7
Gender
 Male148235.4
 Female270164.6
Educational level
 No education3448.2
 Completed elementary school309373.9
 Completed middle/high school/associate degree50512.1
 Completed bachelor degree or higher2415.8
Marital status
 Single2786.6
 Married244658.5
 Separated/divorced/widowed145934.9
Income level per month
 Less than 5000 Baht 1312274.6
 5001–10,000 Baht56713.6
 10,001–20,000 Baht3087.4
 20,001 Baht and higher1864.4
Residence
 Rural190645.6
 Urban188445.0
 Metropolitan (Bangkok)3939.4
Living arrangement
 Living alone3267.8
 Living with others385792.2
Number of years living in this community
 1–10 years3648.7
 More than 10 years381991.3
Health problem
 No100624.0
 Yes317776.0
1 One US $ = 35 Baht.
Table 2. Descriptive statistics of age-friendly environments and quality of life.
Table 2. Descriptive statistics of age-friendly environments and quality of life.
VariablenPercent
Neighbourhood built environments
Neighbourhood service accessibility
High264263.2
Low154136.8
(Min–Maximum = 4–16, cut point = 10) 1
Neighbourhood street connectivity
High224853.7
Low193546.3
(Min–Maximum = 3–12, cut point = 8)
Places for walking in neighbourhood
High229254.8
Low189145.2
(Min–Maximum = 6–24, cut point = 16)
Neighbourhood aesthetics
High258661.8
Low159738.2
(Min–Maximum = 4–16, cut point = 11)
Neighbourhood safety
Neighbourhood crime
High229154.8
Low189245.2
(Min–Maximum = 3–12, cut point = 4)
Neighbourhood traffic hazards
High233055.7
Low185344.3
(Min–Maximum = 3–12, cut point = 6)
Neighbourhood social environments
Neighbourhood social trust
High232655.6
Low185744.4
(Min–Maximum = 3–12, cut point = 10)
Neighbourhood social cohesion
High315175.3
Low103224.7
(Min–Maximum = 3–12, cut point = 9)
Neighbourhood social support
High347583.1
Low70816.9
(Min–Maximum = 3–12, cut point = 9)
Total neighbourhood age-friendly environments
High215151.4
Low203248.6
(Min–Maximum = 17–98, cut point = 63)
Quality of life
Poor/normal268464.2
Good149935.8
(Min–Maximum = 30–130, the cut point = 96)
1 Minimum and maximum scores on subscale, median cut point value.
Table 3. Factors associated with quality of life among Thai older adults using χ2 statistics.
Table 3. Factors associated with quality of life among Thai older adults using χ2 statistics.
ItemsLevel of Quality of Life *
Poor/NormalGood
n%n%
Gender
 Male95564.4%52735.6%
 Female172964.0%97236.0%
Educational level ***
 No education29686.0%4814.0%
 Completed elementary school203665.8%105734.2%
 Completed middle/high school/associate degree25550.5%25049.5%
 Completed bachelor degree or higher9740.2%14459.8%
Marital status ***
 Single19269.1%8630.9%
 Married150361.4%94338.6%
 Separated/divorced/widowed98967.8%47032.2%
Income level per month ***
 Less than 5000 Baht212067.9%100232.1%
 5001–10,000 Baht33058.2%23741.8%
 10,001–20,000 Baht16051.9%14848.1%
 20,001 Baht and higher7439.8%11260.2%
Age level ***
 60–69 years137760.6%89539.4%
 70–79 years89865.2%48034.8%
 80 years and higher40976.7%12423.3%
Residence **
 Rural127666.9%63033.1%
 Urban116862.0%71638.0%
 Metropolitan (Bangkok)24061.1%15338.9%
Health problem ***
 No55755.4%44944.6%
 Yes212766.9%105033.1%
Living arrangement
 Living alone22268.1%10431.9%
 Living with others246263.8%139536.2%
Number of years living in this community ***
 1–10 years26773.4%9726.6%
 More than 10 years241763.3%140236.7%
Neighbourhood built environments
Living in neighbourhood with service accessibility ***
 High149456.5%114843.5%
 Low119077.2%35122.8%
Living in neighbourhood with street connectivity ***
 High133259.3%91640.7%
 Low135269.9%58330.1%
Living in neighbourhood with places for walking ***
 High129656.5%99643.5%
 Low138873.4%50326.6%
Neighbourhood aesthetics ***
 High149057.6%109642.4%
 Low119474.8%40325.2%
Neighbourhood securities
Living in neighbourhood with crime ***
 High162971.1%66228.9%
 Low105555.8%83744.2%
Living in neighbourhood with traffic hazards **
 High154266.2%78833.8%
 Low114261.6%71138.4%
Neighbourhood social environments
Neighbourhood social trust ***
 High121152.1%111547.9%
 Low147379.3%38420.7%
Neighbourhood social cohesion ***
 High185959.0%129241.0%
 Low82579.9%20720.1%
Neighbourhood social support ***
 High211360.8%136239.2%
 Low57180.6%13719.4%
* Poor or normal quality of life was defined as the total score of quality of life below 96, whereas good quality of life was defined as the total score of quality of life equal to or above 96; ** p < 0.01; *** p < 0.001.
Table 4. Total age-friendly environments (physical, security, and social environments), socio-demographic factors and health conditions as predictors of quality of life among Thai older adults.
Table 4. Total age-friendly environments (physical, security, and social environments), socio-demographic factors and health conditions as predictors of quality of life among Thai older adults.
PredictorsAdjusted Odds Ratio95% CI
LowerUpper
Perceived age-friendly environments ***
 High3.7933.2964.365
 Low (Reference)
Educational level ***
 No education (Reference)
 Completed elementary school2.3821.7153.307
 Completed middle/high school/associate degree4.1882.8626.128
 Completed bachelor degree or higher4.9453.0767.949
Marital status *
 Single (Reference)
 Married1.3881.0391.855
 Separated/divorced/widowed1.290.9531.747
Income level per month **
 Less than 5000 Baht (Reference)
 5001–10,000 Baht1.3481.1021.649
 10,001–20,000 Baht1.3821.0461.826
 20,001 Baht and higher1.5721.0652.322
Age level **
 60–69 years1.4561.1451.852
 70–79 years1.4311.1171.834
 80 years and higher (Reference)
Residence
 Rural (Reference)
 Urban1.1651.0001.357
 Metropolitan (Bangkok)1.114.8631.437
Health problem ***
 No1.6821.4341.974
 Yes (Reference)
Number of years living in the community ***
 1–10 years (Reference)
 More than 10 years1.6491.2652.149
CI = Confidence Interval; * p < 0.05; ** p < 0.01; *** p < 0.001.
Table 5. Different dimensions of age-friendly environments as predictors of quality of life among Thai older adults.
Table 5. Different dimensions of age-friendly environments as predictors of quality of life among Thai older adults.
PredictorsAdjusted Odds Ratio 195% CI
LowerUpper
Neighbourhood built environments
Neighbourhood service accessibility ***
High1.7511.4752.080
Low (Reference)
Neighbourhood street connectivity
High0.8610.7291.016
Low (Reference)
Places for walking in neighbourhood ***
High1.3371.1361.574
Low (Reference)
Neighbourhood aesthetics ***
High1.4031.1941.648
Low (Reference)
Neighbourhood securities
Neighbourhood crime ***
Low1.8021.5322.120
High (Reference)
Neighbourhood traffic hazards
Low1.0230.8671.206
High (Reference)
Neighbourhood social environments
Neighbourhood social trust ***
High2.4632.1042.885
Low (Reference)
Neighbourhood social cohesion ***
High1.4701.1961.807
Low (Reference)
Neighbourhood social support **
High1.5181.1941.929
Low (Reference)
1 Adjusted for education, marital status, income, age, residence, health problems, and number of years living in the community; CI = Confidence Interval; ** p < 0.01; *** p < 0.001.

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MDPI and ACS Style

Tiraphat, S.; Peltzer, K.; Thamma-Aphiphol, K.; Suthisukon, K. The Role of Age-Friendly Environments on Quality of Life among Thai Older Adults. Int. J. Environ. Res. Public Health 2017, 14, 282. https://doi.org/10.3390/ijerph14030282

AMA Style

Tiraphat S, Peltzer K, Thamma-Aphiphol K, Suthisukon K. The Role of Age-Friendly Environments on Quality of Life among Thai Older Adults. International Journal of Environmental Research and Public Health. 2017; 14(3):282. https://doi.org/10.3390/ijerph14030282

Chicago/Turabian Style

Tiraphat, Sariyamon, Karl Peltzer, Kriengsak Thamma-Aphiphol, and Kawinarat Suthisukon. 2017. "The Role of Age-Friendly Environments on Quality of Life among Thai Older Adults" International Journal of Environmental Research and Public Health 14, no. 3: 282. https://doi.org/10.3390/ijerph14030282

APA Style

Tiraphat, S., Peltzer, K., Thamma-Aphiphol, K., & Suthisukon, K. (2017). The Role of Age-Friendly Environments on Quality of Life among Thai Older Adults. International Journal of Environmental Research and Public Health, 14(3), 282. https://doi.org/10.3390/ijerph14030282

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